Combined tracer analysis for DESI 2024 BAO
D. Valcin, M. Rashkovetskyi, H. Seo, F. Beutler, P. McDonald, A. de Mattia, A. J. Rosado-Mar\'in, A. J. Ross, N. Padmanabhan, J. Aguilar, S. Ahlen, U. Andrade, D. Bianchi, D. Brooks, E. Chaussidon, S. Chen, X. Chen, T. Claybaugh, A. Cuceu, K. S. Dawson, A. de la Macorra

TL;DR
This paper presents a method to combine overlapping galaxy tracers in DESI data to improve BAO measurements, achieving an 11% enhancement in constraints and producing the most precise DESI BAO result in the specified redshift range.
Contribution
The paper introduces a pipeline using galaxy bias as an optimal weight to merge tracers, tested on simulations and applied to DESI DR1 for improved BAO constraints.
Findings
BAO constraint improvement of 11% using combined tracers
Achieved 0.86% BAO distance scale constraint in DESI DR1
Detected the BAO feature at 9.1 sigma significance
Abstract
This paper demonstrates how the Dark Energy Spectroscopic Instrument (DESI) Data Release 1 (DR1) and future baryon acoustic oscillations (BAO) analyses can optimally combine overlapping tracers (galaxies of distinct types) in the same redshift range. We make a unified catalog of Luminous Red Galaxies (LRGs) and Emission Line Galaxies (ELGs) in the redshift range 0.8 < z < 1.1 and investigate the impact on the BAO constraints. DESI DR1 contains ~30% of the final DESI LRG sample and less than 25% of the final ELG sample, and the combination of LRGs and ELGs increases the number density and reduces the shot noise. We developed a pipeline to merge the overlapping tracers using galaxy bias as an approximately optimal weight and tested the pipeline on a suite of Abacus simulations, calibrated on the final version of the DESI Early Data Release. When applying our pipeline to the DESI DR1…
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